AI RESEARCH

Optimizing Diversity and Quality through Base-Aligned Model Collaboration

arXiv CS.AI

ArXi:2511.05650v2 Announce Type: replace-cross Alignment has greatly improved large language models (LLMs)' output quality at the cost of diversity, yielding highly similar outputs across generations, especially in open-ended generation tasks. We propose Base-Aligned Model Collaboration (BACo), an inference-time token-level model collaboration framework that dynamically combines a base LLM with its aligned counterpart to optimize diversity and quality. Using uncertainty and content-based signals, BACo employs routing strategies to determine, at each token, which model to decode from.